Identification and Inference in First-Price Auctions with Risk-Averse Bidders and Selective Entry

Matthew Gentry, Tong Li, Jingfeng Lu
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引用次数: 4

Abstract

We study identification and estimation in first-price auctions with risk averse bidders and selective entry, building on a flexible entry and bidding framework we call the Affiliated Signal with Risk Aversion (AS-RA) model. This framework extends the AS model of Gentry and Li (2014) to accommodate arbitrary bidder risk aversion, thereby nesting a variety of standard models as special cases. It poses, however, a unique methodological challenge – existing results on identification with risk aversion fail in the presence of selection, while the selection-robust bounds of Gentry and Li (2014) fail in the presence of risk aversion. Motivated by this problem, we translate excludable variation in potential competition into identified sets for AS-RA primitives under various classes of restrictions on the model. We show that a single parametric restriction – on the copula governing selection into entry – is typically sufficient to restore point identification of all primitives. In contrast, a parametric form for utility yields point identification of the utility function but only partial identification of remaining primitives. Finally, we outline a simple semiparametric estimator combining Constant Relative Risk Aversion utility with a parametric signal-value copula. Simulation evidence suggests that this estimator performs very well even in small samples, underscoring the practical value of our identification results.
具有风险规避投标人和选择性进入的首价拍卖的识别和推理
我们研究了具有风险厌恶投标人和选择性进入的首价拍卖中的识别和估计,建立在我们称为风险厌恶附属信号(AS-RA)模型的灵活进入和竞标框架上。该框架扩展了Gentry和Li(2014)的AS模型,以适应任意投标人的风险厌恶,从而嵌套了各种标准模型作为特殊情况。然而,它提出了一个独特的方法论挑战——现有的识别风险厌恶的结果在存在选择的情况下失败,而Gentry和Li(2014)的选择稳健界限在存在风险厌恶的情况下失败。在这个问题的激励下,我们将潜在竞争中的可排除变化转化为在模型的各种限制下的AS-RA原语的识别集。我们证明了一个单一的参数限制-控制选择进入的联结-通常足以恢复所有原语的点识别。相反,效用的参数形式产生效用函数的点识别,但只能部分识别其余的原语。最后,我们概述了一个简单的半参数估计,它结合了常数相对风险厌恶效用和参数信号-值联结。仿真证据表明,即使在小样本中,该估计器也表现得非常好,强调了我们的识别结果的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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